New methods for generating significance levels from multiply-imputed data
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Sprache:Englisch
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Erscheinungsdatum
03.04.2018
Verlag
GRINSeitenzahl
103 (Printausgabe)
Dateigröße
814 KB
Auflage
1. Auflage
Sprache
Englisch
EAN
9783668674196
However, there still exists a problem in generally obtaining significance levels from multiply-imputed data, because the application of multiple imputation requires normally distributed or t-distributed complete-data estimators. Today there are basically three methods that extend the suggestions given in Rubin (1987). First, Li, Raghunathan, and Rubin (1991) proposed a procedure, where significance levels are created by computing a modified Wald-test statistic that is then referred to an F-distribution. This procedure is essentially calibrated and the loss of power due to a finite number of imputations is quite modest in cases likely to occur in practice. But this procedure requires access to the completed-data estimates and their variance-covariance matrices, that may not be available in practice with standard software. Second, Meng and Rubin (1992) proposed a complete-data two-stage-likelihood-ratio-test-based procedure that in large samples is equivalent to the previous one. This procedure requires access to the code for the calculation of the log-likelihood-ratio statistics. Common statistical software does not provide access to the code in their standard analyses routines. Third, Li, Meng, Raghunathan, and Rubin (1991) developed an improved version of a method in Rubin (1987) that only requires the chi-square-statistics from a usual complete-data Wald-test. This method is only approximately calibrated and has a substantial loss of power compared to the previous two.
To sum, there exist several procedures to generate significance levels in general from multiply-imputed data, but none of them has satisfactory applicability due to the facts mentioned above. Since many statistical analyses are based on hypothesis tests, especially on the Wald-test in regression analyses, it is very important to find a method that retains the advantages and overcomes the disadvantages of the existing procedures. Developing such a method was the aim of the present thesis.
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